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arxiv: 2306.04319 · v1 · pith:HZI6VGCGnew · submitted 2023-06-07 · 💻 cs.LG · cs.HC· cs.RO

CaptAinGlove: Capacitive and Inertial Fusion-Based Glove for Real-Time on Edge Hand Gesture Recognition for Drone Control

classification 💻 cs.LG cs.HCcs.RO
keywords handcaptainglovecontroldronef1-scoregesturereal-timeaccuracy
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We present CaptAinGlove, a textile-based, low-power (1.15Watts), privacy-conscious, real-time on-the-edge (RTE) glove-based solution with a tiny memory footprint (2MB), designed to recognize hand gestures used for drone control. We employ lightweight convolutional neural networks as the backbone models and a hierarchical multimodal fusion to reduce power consumption and improve accuracy. The system yields an F1-score of 80% for the offline evaluation of nine classes; eight hand gesture commands and null activity. For the RTE, we obtained an F1-score of 67% (one user).

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